Though graph representation learning (GRL) has made significant progress, it is still a challenge to extract and embed the rich topological structure and feature information in an adequate way. Most existing methods focus on local structure and fail to fully incorporate the global topological structure. To this end, we propose a novel Structure-Preserving Graph Representation Learning (SPGRL) method, to fully capture the structure information of graphs. Specifically, to reduce the uncertainty and misinformation of the original graph, we construct a feature graph as a complementary view via k-Nearest Neighbor method. The feature graph can be used to contrast at node-level to capture the local relation. Besides, we retain the global topologic...
Graphs are important data structures that can capture interactions between individual entities. The...
Various graph neural networks (GNNs) have been proposed to solve node classification tasks in machin...
Knowledge distillation is a learning paradigm for boosting resource-efficient graph neural networks ...
Graph representation learning methods have attracted an increasing amount of attention in recent yea...
Graph representation learning methods have attracted an increasing amount of attention in recent yea...
Graph representation learning (GRL) has emerged as a powerful technique for solving graph analytics ...
Graph representation learning methods have attracted an increasing amount of attention in recent yea...
Unsupervised Graph Representation Learning methods learn a numerical representation of the nodes in ...
In the Big Data era, large graph datasets are becoming increasingly popular due to their capability ...
In the Big Data era, large graph datasets are becoming increasingly popular due to their capability ...
Over the past few years, graph representation learning (GRL) has been a powerful strategy for analyz...
Graphs provide a ubiquitous and universal data structure that can be applied in many domains such as...
Graph is a type of structured data which is attracting increasing attention in recent years due to i...
Graph Contrastive Learning (GCL) has drawn much research interest due to its strong ability to captu...
Thesis will be uploaded upon expiry of the journal embargo on Chapter 3 in July 2023.Graph data cons...
Graphs are important data structures that can capture interactions between individual entities. The...
Various graph neural networks (GNNs) have been proposed to solve node classification tasks in machin...
Knowledge distillation is a learning paradigm for boosting resource-efficient graph neural networks ...
Graph representation learning methods have attracted an increasing amount of attention in recent yea...
Graph representation learning methods have attracted an increasing amount of attention in recent yea...
Graph representation learning (GRL) has emerged as a powerful technique for solving graph analytics ...
Graph representation learning methods have attracted an increasing amount of attention in recent yea...
Unsupervised Graph Representation Learning methods learn a numerical representation of the nodes in ...
In the Big Data era, large graph datasets are becoming increasingly popular due to their capability ...
In the Big Data era, large graph datasets are becoming increasingly popular due to their capability ...
Over the past few years, graph representation learning (GRL) has been a powerful strategy for analyz...
Graphs provide a ubiquitous and universal data structure that can be applied in many domains such as...
Graph is a type of structured data which is attracting increasing attention in recent years due to i...
Graph Contrastive Learning (GCL) has drawn much research interest due to its strong ability to captu...
Thesis will be uploaded upon expiry of the journal embargo on Chapter 3 in July 2023.Graph data cons...
Graphs are important data structures that can capture interactions between individual entities. The...
Various graph neural networks (GNNs) have been proposed to solve node classification tasks in machin...
Knowledge distillation is a learning paradigm for boosting resource-efficient graph neural networks ...